IVCVMar 13, 2024

A Dual-domain Regularization Method for Ring Artifact Removal of X-ray CT

arXiv:2403.08247v25 citationsh-index: 2Med Phys
AI Analysis

This work addresses a domain-specific issue for medical imaging by improving CT image quality, though it appears incremental as it builds on existing regularization techniques.

The authors tackled the problem of ring artifacts in X-ray CT images, which degrade quality and reliability, by proposing a dual-domain regularization model that corrects artifacts in both sinogram and image domains, achieving superior performance in artifact removal and detail preservation compared to existing methods.

Ring artifacts in computed tomography images, arising from the undesirable responses of detector units, significantly degrade image quality and diagnostic reliability. To address this challenge, we propose a dual-domain regularization model to effectively remove ring artifacts, while maintaining the integrity of the original CT image. The proposed model corrects the vertical stripe artifacts on the sinogram by innovatively updating the response inconsistency compensation coefficients of detector units, which is achieved by employing the group sparse constraint and the projection-view direction sparse constraint on the stripe artifacts. Simultaneously, we apply the sparse constraint on the reconstructed image to further rectified ring artifacts in the image domain. The key advantage of the proposed method lies in considering the relationship between the response inconsistency compensation coefficients of the detector units and the projection views, which enables a more accurate correction of the response of the detector units. An alternating minimization method is designed to solve the model. Comparative experiments on real photon counting detector data demonstrate that the proposed method not only surpasses existing methods in removing ring artifacts but also excels in preserving structural details and image fidelity.

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